---
title: LM Studio
description: Use the LM Studio OpenAI compatible API with the AI SDK.
---

# LM Studio Provider

[LM Studio](https://lmstudio.ai/) is a user interface for running local models.

It contains an OpenAI compatible API server that you can use with the AI SDK.
You can start the local server under the [Local Server tab](https://lmstudio.ai/docs/basics/server) in the LM Studio UI ("Start Server" button).

## Setup

The LM Studio provider is available via the `@ai-sdk/openai-compatible` module as it is compatible with the OpenAI API.
You can install it with

<Tabs items={['pnpm', 'npm', 'yarn', 'bun']}>
  <Tab>
    <Snippet text="pnpm add @ai-sdk/openai-compatible" dark />
  </Tab>
  <Tab>
    <Snippet text="npm install @ai-sdk/openai-compatible" dark />
  </Tab>
  <Tab>
    <Snippet text="yarn add @ai-sdk/openai-compatible" dark />
  </Tab>

  <Tab>
    <Snippet text="bun add @ai-sdk/openai-compatible" dark />
  </Tab>
</Tabs>

## Provider Instance

To use LM Studio, you can create a custom provider instance with the `createOpenAICompatible` function from `@ai-sdk/openai-compatible`:

```ts
import { createOpenAICompatible } from '@ai-sdk/openai-compatible';

const lmstudio = createOpenAICompatible({
  name: 'lmstudio',
  baseURL: 'http://localhost:1234/v1',
});
```

<Note>
  LM Studio uses port `1234` by default, but you can change in the [app's Local
  Server tab](https://lmstudio.ai/docs/basics/server).
</Note>

## Language Models

You can interact with local LLMs in [LM Studio](https://lmstudio.ai/docs/basics/server#endpoints-overview) using a provider instance.
The first argument is the model id, e.g. `llama-3.2-1b`.

```ts
const model = lmstudio('llama-3.2-1b');
```

###### To be able to use a model, you need to [download it first](https://lmstudio.ai/docs/basics/download-model).

### Example

You can use LM Studio language models to generate text with the `generateText` function:

```ts
import { createOpenAICompatible } from '@ai-sdk/openai-compatible';
import { generateText } from 'ai';

const lmstudio = createOpenAICompatible({
  name: 'lmstudio',
  baseURL: 'https://localhost:1234/v1',
});

const { text } = await generateText({
  model: lmstudio('llama-3.2-1b'),
  prompt: 'Write a vegetarian lasagna recipe for 4 people.',
  maxRetries: 1, // immediately error if the server is not running
});
```

LM Studio language models can also be used with `streamText`.

## Embedding Models

You can create models that call the [LM Studio embeddings API](https://lmstudio.ai/docs/basics/server#endpoints-overview)
using the `.embeddingModel()` factory method.

```ts
const model = lmstudio.embeddingModel('text-embedding-nomic-embed-text-v1.5');
```

### Example - Embedding a Single Value

```tsx
import { createOpenAICompatible } from '@ai-sdk/openai-compatible';
import { embed } from 'ai';

const lmstudio = createOpenAICompatible({
  name: 'lmstudio',
  baseURL: 'https://localhost:1234/v1',
});

// 'embedding' is a single embedding object (number[])
const { embedding } = await embed({
  model: lmstudio.embeddingModel('text-embedding-nomic-embed-text-v1.5'),
  value: 'sunny day at the beach',
});
```

### Example - Embedding Many Values

When loading data, e.g. when preparing a data store for retrieval-augmented generation (RAG),
it is often useful to embed many values at once (batch embedding).

The AI SDK provides the [`embedMany`](/docs/reference/ai-sdk-core/embed-many) function for this purpose.
Similar to `embed`, you can use it with embeddings models,
e.g. `lmstudio.embeddingModel('text-embedding-nomic-embed-text-v1.5')` or `lmstudio.embeddingModel('text-embedding-bge-small-en-v1.5')`.

```tsx
import { createOpenAICompatible } from '@ai-sdk/openai-compatible';
import { embedMany } from 'ai';

const lmstudio = createOpenAICompatible({
  name: 'lmstudio',
  baseURL: 'https://localhost:1234/v1',
});

// 'embeddings' is an array of embedding objects (number[][]).
// It is sorted in the same order as the input values.
const { embeddings } = await embedMany({
  model: lmstudio.embeddingModel('text-embedding-nomic-embed-text-v1.5'),
  values: [
    'sunny day at the beach',
    'rainy afternoon in the city',
    'snowy night in the mountains',
  ],
});
```
